TANGLE: Two-Level Support Vector Regression Approach for Protein Backbone Torsion Angle Prediction from Primary Sequences
出版年份 2012 全文链接
标题
TANGLE: Two-Level Support Vector Regression Approach for Protein Backbone Torsion Angle Prediction from Primary Sequences
作者
关键词
Protein structure prediction, Protein structure, Structural proteins, Support vector machines, Forecasting, Multiple alignment calculation, Sequence alignment, Neural networks
出版物
PLoS One
Volume 7, Issue 2, Pages e30361
出版商
Public Library of Science (PLoS)
发表日期
2012-02-03
DOI
10.1371/journal.pone.0030361
参考文献
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